To support the unprecedented growth of the Internet of Things (IoT) applications, tremendous data need to be collected by the IoT devices and delivered to the server for further computation. By utilizing the same signals for both radar sensing and data communication, the integrated sensing and communication (ISAC) technique has broken the barriers between data collection and delivery in the physical layer. By exploiting the analog-wave addition in a multi-access channel, over-the-air computation (AirComp) enables function computation via transmissions in the physical layer. The promising performance of ISAC and AirComp motivates the current work on developing a framework called integrated sensing, communication, and computation over-the-air (ISCCO). The performance metrics of radar sensing and AirComp are evaluated by the mean squared errors of the estimated target response matrix and the received computation results, respectively. The design challenge of MIMO ISCCO lies in the joint optimization of beamformers for sensing, communication, and computation at both the IoT devices and the server, which results in a non-convex problem. To solve this problem, an algorithmic solution based on the technique of semidefinite relaxation is proposed. The use case of target location estimation based on ISCCO is demonstrated in simulation to show the performance superiority.
翻译:为支持Tings(IoT)互联网应用史无前例的增长,需要通过IoT装置收集巨大的数据,并将其传送到服务器,以便进一步计算。通过利用雷达遥感和数据通信的相同信号,综合遥感和通信(ISAC)技术打破了数据收集和在物理层交付之间的障碍。利用多接入频道的模拟波增加,空中计算(AirComp)使通过物理层传输进行计算功能计算成为可能。ISAC和AirComp的有希望的性能激励了目前开发一个称为综合遥感、通信和空中计算(ISCCO)的框架的工作。雷达遥感和AirComp的性能衡量标准分别用估计目标反应矩阵和收到的计算结果的平均平方差来评估。IMO ISCCO的设计挑战在于联合优化用于遥感、通信和物理层传输的光谱,这导致了非convex问题。为了解决这一问题,基于半确定性能模型的模拟性能模型的I算法解决方案是以模拟性能模型显示SCO的升级性能。